 Challenge: Solving Task Using XGBoost
Challenge: Solving Task Using XGBoost
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The "Credit Scoring" dataset is commonly used for credit risk analysis and binary classification tasks. It contains information about customers and their credit applications, with the goal of predicting whether a customer's credit application will result in a good or bad credit outcome.
Your task is to solve classification task on "Credit Scoring" dataset:
- Create Dmatrixobjects using training and test data. Specifyenable_categoricalargument to use categorical features.
- Train the XGBoost model using the training DMatrixobject.
- Set the split threshold to 0.5for correct class detection.
Note
'objective': 'binary:logistic'parameter means that we will use logistic loss (also known as binary cross-entropy loss) as an objective function when training the XGBoost model.
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Challenge: Solving Task Using XGBoost
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The "Credit Scoring" dataset is commonly used for credit risk analysis and binary classification tasks. It contains information about customers and their credit applications, with the goal of predicting whether a customer's credit application will result in a good or bad credit outcome.
Your task is to solve classification task on "Credit Scoring" dataset:
- Create Dmatrixobjects using training and test data. Specifyenable_categoricalargument to use categorical features.
- Train the XGBoost model using the training DMatrixobject.
- Set the split threshold to 0.5for correct class detection.
Note
'objective': 'binary:logistic'parameter means that we will use logistic loss (also known as binary cross-entropy loss) as an objective function when training the XGBoost model.
Oplossing
Bedankt voor je feedback!
single